Kuhn Daniel, Weskamp Nils, Hüllermeier Eyke, Klebe Gerhard
Department of Pharmaceutical Chemistry, University of Marburg, Marbacher Weg 6, 35032 Marburg, Germany.
ChemMedChem. 2007 Oct;2(10):1432-47. doi: 10.1002/cmdc.200700075.
Increasingly, drug-discovery processes focus on complete gene families. Tools for analyzing similarities and differences across protein families are important for the understanding of key functional features of proteins. Herein we present a method for classifying protein families on the basis of the properties of their active sites. We have developed Cavbase, a method for describing and comparing protein binding pockets, and show its application to the functional classification of the binding pockets of the protein family of protein kinases. A diverse set of kinase cavities is mutually compared and analyzed in terms of recurring functional recognition patterns in the active sites. We are able to propose a relevant classification based on the binding motifs in the active sites. The obtained classification provides a novel perspective on functional properties across protein space. The classification of the MAP and the c-Abl kinases is analyzed in detail, showing a clear separation of the respective kinase subfamilies. Remarkable cross-relations among protein kinases are detected, in contrast to sequence-based classifications, which are not able to detect these relations. Furthermore, our classification is able to highlight features important in the optimization of protein kinase inhibitors. Using small-molecule inhibition data we could rationalize cross-reactivities between unrelated kinases which become apparent in the structural comparison of their binding sites. This procedure helps in the identification of other possible kinase targets that behave similarly in "binding pocket space" to the kinase under consideration.
药物发现过程越来越关注完整的基因家族。分析蛋白质家族异同的工具对于理解蛋白质的关键功能特征至关重要。在此,我们提出一种基于蛋白质活性位点特性对蛋白质家族进行分类的方法。我们开发了Cavbase,一种用于描述和比较蛋白质结合口袋的方法,并展示了其在蛋白激酶蛋白质家族结合口袋功能分类中的应用。对一组多样的激酶腔进行相互比较,并根据活性位点中反复出现的功能识别模式进行分析。我们能够根据活性位点中的结合基序提出相关分类。所获得的分类为蛋白质空间的功能特性提供了新的视角。详细分析了MAP激酶和c-Abl激酶的分类,显示出各自激酶亚家族的明显分离。与基于序列的分类不同,我们检测到蛋白激酶之间存在显著的交叉关系,而基于序列的分类无法检测到这些关系。此外,我们的分类能够突出在蛋白激酶抑制剂优化中重要的特征。利用小分子抑制数据,我们可以解释不相关激酶之间的交叉反应性,这在它们结合位点的结构比较中很明显。这个过程有助于识别在“结合口袋空间”中与所考虑的激酶行为相似的其他可能的激酶靶点。